Item Details
Skip Navigation Links
   ActiveUsers:976Hits:21489354Skip Navigation Links
Show My Basket
Contact Us
IDSA Web Site
Ask Us
Today's News
HelpExpand Help
Advanced search

In Basket
  Journal Article   Journal Article
 

ID091579
Title ProperEnergy demand estimation of South Korea using artificial neural network
LanguageENG
AuthorGeem, Zong Woo ;  Roper, William E
Publication2009.
Summary / Abstract (Note)Because South Korea's industries depend heavily on imported energy sources (fifth largest importer of oil and second largest importer of liquefied natural gas in the world), the accurate estimating of its energy demand is critical in energy policy-making. This research proposes an artificial neural network model (a structure with feed-forward multilayer perceptron, error back-propagation algorithm, momentum process, and scaled data) to efficiently estimate the energy demand for South Korea. The model has four independent variables, such as gross domestic product (GDP), population, import, and export amounts. The data are obtained from diverse local and international sources. The proposed model better estimated energy demand than a linear regression model (a structure with multiple linear variables and least square method) or an exponential model (a structure with mixed integer variables, branch and bound method, and Broyden-Fletcher-Goldfarb-Shanno (BFGS) method) in terms of root mean squared error (RMSE). The model also forecasted better than the other two models in terms of RMSE without any over-fitting problem. Further testing with four scenarios based upon reliable source data showed unanticipated results. Instead of growing permanently, the energy demands peaked at certain points, and then decreased gradually. This trend is quite different from the results by regression or exponential model.
`In' analytical NoteEnergy Policy Vol. 37, No. 10; Oct 2009: p4049-4054
Journal SourceEnergy Policy Vol. 37, No. 10; Oct 2009: p4049-4054
Key WordsEnergy Demand ;  Artificial Neural Network ;  South Korea